2023
DOI: 10.3390/en16248116
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Lithofacies Identification from Wire-Line Logs Using an Unsupervised Data Clustering Algorithm

Md Monjur Ul Hasan,
Tanzeer Hasan,
Reza Shahidi
et al.

Abstract: Stratigraphic identification from wire-line logs and core samples is a common method for lithology classification. This traditional approach is considered superior, despite its significant financial cost. Artificial neural networks and machine learning offer alternative, cost-effective means for automated data interpretation, allowing geoscientists to extract insights from data. At the same time, supervised and semi-supervised learning techniques are commonly employed, requiring a sufficient amount of labeled … Show more

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